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Context-adaptive Pansharpening based on binary partition tree segmentation

机译:基于二进制分区树分割的上下文 - 自适应泛汉语

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Pansharpening is a successful application of data fusion to remotely sensed data. It aims at obtaining a detailed representation of an Earth's zone both in terms of spatial and spectral resolution. This is done through the fusion of a panchromatic and a multispectral image (having complementary spatial and spectral resolutions) that are acquired simultaneously by several optical satellites. The result of the fusion is commonly achieved by introducing the spatial details, modulated opportunely by gains, in the multispectral one. The injection gains can be estimated globally over the image, or locally, thus obtaining spatially variant values. The latter approach has been proven to achieve better results and it is based on windowing the analyzed image in squared blocks. In this paper we propose a more elaborated concept of locality, as it is based on an opportune segmentation of the target scene. In greater details, we propose to estimate the local injection gains on regions composed of pixel with similar spectral characteristic, as defined by a segmentation. Such local approach is compared to the global one and to the conventional local estimation based on overlapping and non-overlapping blocks. The performances have been assessed by using three real datasets, the first acquired by WorldView-2 and the other two by Ple?iades. The analysis evidences the appreciable improvements of the performances with respect to classical schemes.
机译:Pansharpening是数据融合到远程感测数据的成功应用。它旨在在空间和光谱分辨率方面获得地球区的详细表示。这是通过融合通过多个光学卫星同时获取的全形和多光谱图像(具有互补的空间和光谱分辨率)来完成的。通过引入空间细节,在多边光谱第一中通过引入空间细节,融合的结果通常通过。可以通过图像或本地全局估计喷射增益,从而获得空间变体值。后一种方法已被证明可以实现更好的结果,并且基于窗口在平方块中的分析图像。在本文中,我们提出了一个更详细的地方概念,因为它基于目标场景的适当细分。更详细地,我们建议估计由具有相似光谱特性的像素组成的区域上的局部注射收益,如分割所定义。将这种局部方法与全局的方法和基于重叠和非重叠块的传统局部估计进行比较。通过使用三个真实数据集进行了评估,由WorldView-2和其他两个通过PLE获取的第一次获得的评估。分析证明了古典方案的可观改进。

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